{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[Sebastian Raschka](http://www.sebastianraschka.com)\n",
    "\n",
    "[back](https://github.com/rasbt/matplotlib-gallery) to the `matplotlib-gallery` at [https://github.com/rasbt/matplotlib-gallery](https://github.com/rasbt/matplotlib-gallery)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {
    "collapsed": false
   },
   "outputs": [],
   "source": [
    "%load_ext watermark"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Last updated: 31/03/2015 \n",
      "\n",
      "CPython 3.4.3\n",
      "IPython 3.0.0\n",
      "\n",
      "matplotlib 1.4.3\n",
      "numpy 1.9.1\n"
     ]
    }
   ],
   "source": [
    "%watermark -u -v -d -p matplotlib,numpy"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "<font size=\"1.5em\">[More info](http://nbviewer.ipython.org/github/rasbt/python_reference/blob/master/ipython_magic/watermark.ipynb) about the `%watermark` extension</font>"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {
    "collapsed": false
   },
   "outputs": [],
   "source": [
    "%matplotlib inline"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "<br>\n",
    "<br>"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Matplotlib Formatting II: gridlines"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Sections"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "- [Generating-some-sample-data](#Generating-some-sample-data)\n",
    "- [Default grid](#Default-grid)\n",
    "- [Vertical and horizontal grids](#Vertical-and-horizontal-grids)\n",
    "    - [Vertical grid](#Vertical-grid)\n",
    "    - [Horizontal grid](#Horizontal-grid)\n",
    "- [Controlling the gridline style](#Controlling-the-gridline-style)\n",
    "    - [Changing the tick frequency](#Changing-the-tick-frequency)\n",
    "    - [Changing the tick color and linestyle](#Changing-the-tick-color-and-linestyle)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "<br>\n",
    "<br>"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Generating some sample data"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[[back to top](#Sections)]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXIAAAEACAYAAACuzv3DAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nRU5ErkJggg==\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x1065c1dd8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "import numpy as np\n",
    "import random\n",
    "from matplotlib import pyplot as plt\n",
    "\n",
    "data = np.random.normal(0, 20, 1000) \n",
    "\n",
    "# fixed bin size\n",
    "bins = np.arange(-100, 100, 5) # fixed bin size\n",
    "\n",
    "plt.xlim([min(data)-5, max(data)+5])\n",
    "\n",
    "plt.hist(data, bins=bins, alpha=0.5)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "<br>\n",
    "<br>"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Default grid"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[[back to top](#Sections)]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXsAAAEACAYAAABS29YJAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAxD2ANAAhD0ANMD/A0Hf/AGvx+/PAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x1065c16a0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "plt.hist(data, bins=bins, alpha=0.5)\n",
    "plt.grid()\n",
    "\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "Or alternatively:"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXsAAAEACAYAAABS29YJAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAxD2ANAAhD0ANMD/A0Hf/AGvx+/PAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x1068c8320>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "plt.hist(data, bins=bins, alpha=0.5)\n",
    "ax = plt.gca()\n",
    "ax.grid(True)\n",
    "\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "<br>\n",
    "<br>"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Vertical and horizontal grids"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[[back to top](#Sections)]"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Vertical grid"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[[back to top](#Sections)]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXsAAAEACAYAAABS29YJAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nDwAdQLMHgA6g2QNAB/w/iinSQYv+tTUAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x106b20c50>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "plt.hist(data, bins=bins, alpha=0.5)\n",
    "ax = plt.gca()\n",
    "ax.xaxis.grid(True)\n",
    "\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Horizontal grid"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[[back to top](#Sections)]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXsAAAEACAYAAABS29YJAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nGPaS1ADDXpIaYNhLUgMMe0lqwP8DxsyhKHlYk/MAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x106d6ab00>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "plt.hist(data, bins=bins, alpha=0.5)\n",
    "ax = plt.gca()\n",
    "ax.yaxis.grid(True)\n",
    "\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "<br>\n",
    "<br>"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Controlling the gridline style"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[[back to top](#Sections)]"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Changing the tick frequency"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[[back to top](#Sections)]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXsAAAD7CAYAAACL+TRnAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nDHtJGgDDXpIGwLCXpAH4/45j/sWLi1wcAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x106aaa8d0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "import numpy as np\n",
    "\n",
    "# major ticks every 10                                     \n",
    "major_ticks = np.arange(-100, 101, 10)                                              \n",
    "\n",
    "ax = plt.gca()\n",
    "ax.yaxis.grid()\n",
    "\n",
    "ax.set_yticks(major_ticks)                                                       \n",
    "                                    \n",
    "plt.hist(data, bins=bins, alpha=0.5)\n",
    "\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Changing the tick color and linestyle"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[[back to top](#Sections)]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXsAAAEACAYAAABS29YJAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\ngg==\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x1065c1e10>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "from matplotlib import rcParams\n",
    "\n",
    "rcParams['grid.linestyle'] = '-'\n",
    "rcParams['grid.color'] = 'blue'\n",
    "rcParams['grid.linewidth'] = 0.2\n",
    "\n",
    "plt.grid()\n",
    "plt.hist(data, bins=bins, alpha=0.5)\n",
    "\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.4.3"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 0
}
